首页|期刊导航|深圳大学学报(理工版)|面向工业CPS联邦入侵检测的协作保障框架

面向工业CPS联邦入侵检测的协作保障框架OA

A collaborative assurance framework for federated intrusion detection in industrial cyber-physical system

中文摘要英文摘要

针对工业信息物理系统(cyber-physical systems,CPS)联邦入侵检测中面临的非独立同分布(non-independent identically distributed,Non-IID)数据及对抗性攻击,提出一种基于服务质量(quality of service,QoS)评估和超级账本Fabric(hyperledger Fabric,HLF)联盟链技术的协作保障框架,记为QoS-HLF.提出QoS感知/评估(QoS-awareness/evaluation,QoS-A/E)的协作模型筛选方案,对工业CPS不同区域子网下入侵检测模型的协作服务质量进行量化评估,以协同同态第三方入侵检测模型实施联邦建模,解决了因异构数据导致的协作模型收敛难题.通过将基于许可的分布式HLF与协作建模协议融合,构建了去中心联邦跨域协作建模平台,确保在无可信任的中央组织时联邦学习的参与者们仍能诚信地发起或参与协作.设计基于QoS-A/E的联邦协作链码,保证能够自动且可靠地执行各协作参与者一致同意的协作协议,解决了当联邦学习参与者模型性能突然衰减或故障以及出现敌意攻击行为时能够及时发现并寻找其他合格性能替代者以达成协议的问题.对真实工业CPS数据集的实验评估表明,QoS-HLF框架将检测的F1得分提升至98.29%,并将虚警率降低至1.28%,同时通过区块链存证与智能合约机制显著增强了协作过程的安全性与可信自动化能力.研究结果为工业CPS环境下的安全协作检测提供了一种高效且可信的解决方案.

To address the challenges posed by non-independent identically distributed(Non-IID)data and adversarial attacks in federated intrusion detection for industrial cyber-physical systems(CPS),a collaborative assurance framework based on quality of service(QoS)and hyperledger Fabric(HLF)consortium blockchain technology is proposed,termed as QoS-HLF.Specifically,a QoS-awareness/evaluation(QoS-A/E)collaborative model selection mechanism is developed to quantitatively assess the collaborative service quality of intrusion detection models deployed in different regional subnetworks of industrial CPS.By selecting QoS-consistent and functionally homogeneous third party models for federated training,the proposed approach mitigates convergence degradation caused by heterogeneous data distributions.In addition,by integrating the permissioned distributed architecture of HLF with the collaborative modeling protocol,a decentralized cross-domain federated modeling platform is constructed to ensure that federated learning participants can securely initiate and engage in collaborations without relying on a trusted central authority.A QoS-A/E-driven federated collaboration chaincode is further designed to enable automatic and reliable execution of agreed protocols.The mechanism supports timely detection of participants whose model performance suddenly deteriorates,fails,or exhibits adversarial behavior,and dynamically replaces them with qualified alternatives to maintain collaboration stability.Experimental results and theoretical analysis on real industrial CPS datasets demonstrate that the proposed QoS-HLF framework achieves an F1-score of 98.29%and reduces the false positive rate to 1.28%.Meanwhile,blockchain-based evidence storage and smart contract mechanisms significantly enhance the security,trustworthiness,and automation capability of the collaborative process.The proposed framework offers an efficient and reliable solution for secure collaborative detection in industrial CPS.

梁俊威;陈剑勇;林秋镇;杨耿;江凯

深圳信息职业技术大学计算机与软件学院,广东 深圳 518172||深圳大学计算机与软件学院,广东 深圳 518060深圳大学计算机与软件学院,广东 深圳 518060深圳大学计算机与软件学院,广东 深圳 518060深圳信息职业技术大学计算机与软件学院,广东 深圳 518172深圳信息职业技术大学计算机与软件学院,广东 深圳 518172

信息技术与安全科学

信息物理系统入侵检测系统服务质量超级记账本Fabric联盟链协作建模协议

cyber-physical systemsintrusion detection systemquality of servicehyperledger Fabricconsortium blockchaincollaborative modeling protocol

《深圳大学学报(理工版)》 2026 (2)

162-170,9

Basic and Applied Basic Research of Guangdong Province(2023A1515110070,2022A1515110667) 广东省基础与应用基础研究基金资助项目(2023A151511 0070,2022A1515110667)

10.3724/SP.J.1249.2026.02162

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